
Multiple regression, linear modelling, and multivariate analysis are among the most useful statistical methods for the elucidation of complicated data, and all of them are most easily explained in matrix terms. Anyone concerned with the analysis of data needs to be familiar with these methods and a knowledge of matrices is essential in order to understand the literature in which they are described. This knowledge must include some advanced topics, but can do without much of the material covered by general textbooks of matrix algebra. This book is intended to cover the necessary ground as briefly as possible. Only the simplest of basic mathematics is used, and the book should be accessible to engineers, biologists, and social scientists as well as those with a specifically mathematical background. The text of the first edition has been re-written and revised to take account of recent developments in statistical practice. The more difficult topics have been expanded and the mathematical explanations have been simplified. A new chapter has been included, at readers' request, to cover such topics as vectorising, matrix calculus and complex numbers.
This book investigates the specific subset of matrix algebra required to effectively perform and interpret advanced statistical analyses. M. J. R. Healy, an experienced statistician, provides a streamlined framework that bypasses extraneous theoretical material found in general textbooks. By focusing on the practical application of matrices in fields like multiple regression and multivariate analysis, the text serves as a bridge for researchers across disciplines including biology, engineering, and the social sciences.
What You Will Find
Experts and reviewers consistently identify this work as a highly practical handbook for students and professionals who require a functional understanding of matrix algebra. The text is widely recognized for its accessibility and its success in distilling complex mathematical concepts into a format suitable for applied statistical practice.
Page Count:
158
Publication Date:
2000-07-13
Publisher:
Oxford University Press
ISBN-10:
0198507038
ISBN-13:
9780198507031
No comments yet. Be the first to share your thoughts!